Efficient Design to Encounter Two-Way Interactions

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Efficient Design to Encounter Two-Way Interactions

Postby acanakci » Wed Jul 24, 2024 1:22 am

Hello,

I am encountering an error when I run the following syntax:

Design
;alts = alt1, alt2
;rows = 168
;block = 21
;eff = (mnl,d)
;model:
U(alt1) = b0[1]
+ b1[1] * A[0,1]
+ b2[-1] * B[0,1]
+ b3[1] * C[0,1,2,3]
+ b4[-1] * D[0,1,2]
+ b5[1] * E[0,1,2]
+ b6[1] * F[0,1]
+ b7[1] * G[40,80,120,160]
+ b8[1] * H[0,1,2,3,4]
+ b9[1] * I[20,40,60]
// Two-way interactions with prior values
+ b10[-1] * A[0,1] * B[0,1]
+ b11[1] * A[0,1] * C[0,1,2,3]
+ b12[-1] * A[0,1] * D[0,1,2]
+ b13[1] * A[0,1] * E[0,1,2]
+ b14[1] * A[0,1] * F[0,1]
+ b15[1] * A[0,1] * G[40,80,120,160]
+ b16[1] * A[0,1] * H[0,1,2,3,4]
+ b17[1] * A[0,1] * I[20,40,60]
+ b18[-1] * B[0,1] * C[0,1,2,3]
+ b19[1] * B[0,1] * D[0,1,2]
+ b20[-1] * B[0,1] * E[0,1,2]
+ b21[-1] * B[0,1] * F[0,1]
+ b22[-1] * B[0,1] * G[40,80,120,160]
+ b23[-1] * B[0,1] * H[0,1,2,3,4]
+ b24[-1] * B[0,1] * I[20,40,60]
+ b25[-1] * C[0,1,2,3] * D[0,1,2]
+ b26[1] * C[0,1,2,3] * E[0,1,2]
+ b27[1] * C[0,1,2,3] * F[0,1]
+ b28[1] * C[0,1,2,3] * G[40,80,120,160]
+ b29[1] * C[0,1,2,3] * H[0,1,2,3,4]
+ b30[1] * C[0,1,2,3] * I[20,40,60]
+ b31[-1] * D[0,1,2] * E[0,1,2]
+ b32[-1] * D[0,1,2] * F[0,1]
+ b33[-1] * D[0,1,2] * G[40,80,120,160]
+ b34[-1] * D[0,1,2] * H[0,1,2,3,4]
+ b35[-1] * D[0,1,2] * I[20,40,60]
+ b36[1] * E[0,1,2] * F[0,1]
+ b37[1] * E[0,1,2] * G[40,80,120,160]
+ b38[1] * E[0,1,2] * H[0,1,2,3,4]
+ b39[1] * E[0,1,2] * I[20,40,60]
+ b40[1] * F[0,1] * G[40,80,120,160]
+ b41[1] * F[0,1] * H[0,1,2,3,4]
+ b42[1] * F[0,1] * I[20,40,60]
+ b43[1] * G[40,80,120,160] * H[0,1,2,3,4]
+ b44[1] * G[40,80,120,160] * I[20,40,60]
+ b45[1] * H[0,1,2,3,4] * I[20,40,60]
/
U(alt2) = b1 * A
+ b2 * B
+ b3 * C
+ b4 * D
+ b5 * E
+ b6 * F
+ b7 * G
+ b8 * H
+ b9 * I
// Two-way interactions with prior values
+ b10 * A * B
+ b11 * A * C
+ b12 * A * D
+ b13 * A * E
+ b14 * A * F
+ b15 * A * G
+ b16 * A * H
+ b17 * A * I
+ b18 * B * C
+ b19 * B * D
+ b20 * B * E
+ b21 * B * F
+ b22 * B * G
+ b23 * B * H
+ b24 * B * I
+ b25 * C * D
+ b26 * C * E
+ b27 * C * F
+ b28 * C * G
+ b29 * C * H
+ b30 * C * I
+ b31 * D * E
+ b32 * D * F
+ b33 * D * G
+ b34 * D * H
+ b35 * D * I
+ b36 * E * F
+ b37 * E * G
+ b38 * E * H
+ b39 * E * I
+ b40 * F * G
+ b41 * F * H
+ b42 * F * I
+ b43 * G * H
+ b44 * G * I
+ b45 * H * I
$

The error I encounter is: Warning: No valid design has been found after 10 minutes. If no designs have been evaluated (see the counter below), this may be because a single design is taking a very long time to evaluate. If invalid designs are reported below, there may be a problem with the specification of the design. A common problem is that the choice probabilities are too extreme (close to 1 and 0), perhaps because some or all of the prior values are too large. Also, it is generally a good idea to start with a simple design (MNL, non-Bayesian), then add complexity. If you press stop, a design will be reported, which may assist in diagnosing the problem.

Could the problem be related to the following facts:
1- I do not assign each level of an attribute a different prior parameter; rather, I assign, e.g., attribute A with coefficient 1. There are examples in the manual in which prior parameters are represented with normal distribution. I am not sure if I need to follow a similar logic.
2- All of my attributes are not categorical but I think I treat them as categorical as I am not sure how to differentiate between them while writing the syntax.

Your help would be greatly appreciated.

Thank you very much!

Beyza
acanakci
 
Posts: 16
Joined: Tue Jun 11, 2024 11:55 pm

Re: Efficient Design to Encounter Two-Way Interactions

Postby Michiel Bliemer » Wed Jul 24, 2024 6:42 am

The issue is that your priors do not make sense. A prior value of 1 is clearly not appropriate when the attribute levels are very large, such as 40, 80, 120, 160. This results in an infinite D-error because all choice probabilities become either 0 or 1. You should either provide reasonable priors, preferably from a pilot study, or use uninformative priors equal to 0 or close to 0, e.g. 0.00001.

Note that \\ is not the correct symbol for comments, please use a question mark for comments, e.g.
? this is a comment

For any categorical variables, you will need to use dummy coding when generating an efficient design. For example:
b4.dummy[-0.01|-0.02] * D[1,2,0] ? the last level is the base level

To create interactions with dummy coded variables, you will need something like:
i1 * G * D.dummy[1] + i2 * G * D.dummy[2]

For interactions between dummy coded variables, you will need:
i1 * D.dummy[1] * E.dummy[1] + i2 * D.dummy[1] * E.dummy[2] + i3 * D.dummy[2] * E.dummy[1] + i4 * D.dummy[2] * E.dummy[2]

In other words, for categorical variables you will need to make interactions between individual levels. This will significantly increase the number of parameters in your model, far beyond the number of parameters that you will be able to estimate in your model. So perhaps think carefully if you need all interaction terms as the model has a huge number of parameters and in model estimation most of them will not be statistically significant or even meaningful.

Michiel
Michiel Bliemer
 
Posts: 1833
Joined: Tue Mar 31, 2009 4:13 pm

Re: Efficient Design to Encounter Two-Way Interactions

Postby acanakci » Wed Jul 24, 2024 7:34 pm

Thank you very much!

May I also ask how we would represent the continuous variables and their interactions with each other and with the categoric variables?

Also, the example syntax for orthogonal fractional factorial design and efficient design that are provided in the manual are as follows:

1 - Orthogonal fractional factorial design: Considering our discussion, I wonder why we do not have an interaction term for each attribute level but have x1*x2, directly.

? use of interactions specified in the model
Design
;alts = alt1, alt2, alt3
;rows = 8
;orth = sim
;model:
U(alt1) = b01 + b1 * x1[0,1] + b2 * x2[0,1] + b3 * x1 * x2 /
U(alt2) = b02 + b1 * x1 + b2 * x2 /
U(alt3) = b1 * x1 + b2 * x2 $

2- Efficient design: Considering our discussion, I wonder why we do not specify the attributes as dummy (like
b4.dummy[-0.01|-0.02] * D[1,2,0]).

Design
;alts = alt1, alt2
;rows = 12
;eff = (mnl,d)
;model:
U(alt1) = b1[-0.2] + b2[1.2] * A[0,1,2] + b3[2.5] * B[0,1] /
U(alt2) = b2 * A + b4[1.1] * C[2,4,6,8]
$

Beyza
acanakci
 
Posts: 16
Joined: Tue Jun 11, 2024 11:55 pm

Re: Efficient Design to Encounter Two-Way Interactions

Postby Michiel Bliemer » Thu Jul 25, 2024 6:53 am

I provided an example of an interaction between a numerical variable and a categorical variable. I also provided an example of an interaction between two categorical variables. Interactions between two numerical variables is simply A*B as you specified previously.

For orthogonal designs, specifying dummy variables or not does not make a difference because an orthogonal design does not optimise the design for a specific utility function, it merely ensures that each combination of attribute levels appears equally across all rows. For efficient designs, the design is optimised for a specific utility function and therefore it is important that you formulate the utility function as closely as possible to the utility function that you will estimate, which means using dummy (or effects) coding for categorical variables. For numerical variables, you would typically not use dummy coding in model estimation, but you could.

Michiel
Michiel Bliemer
 
Posts: 1833
Joined: Tue Mar 31, 2009 4:13 pm

Re: Efficient Design to Encounter Two-Way Interactions

Postby acanakci » Thu Jul 25, 2024 11:55 pm

Hello,

With the following syntax for the orthogonal fractional factorial design:
Design
;alts = alt1, alt2
;rows = 180
;orth = ood
;block = 20
;model:
U(alt1) = b01 + b1 * ToolSupply[0,1] + b2 * Weather[0,1] + b3 * Traffic[0,1,2] + b4 * Insurance[0,1,2] + b5 * Locker[0,1] + b6 * WorkingHours[0,1,2,3,4] +
b7 * BikeLines[0,1,2] + b8 * CompPerPackage[0,1,2,3] + b9 * CompPerKM[0,1,2] +
i1 * ToolSupply[1] * Weather[1] +
i2 * ToolSupply[1] * Traffic[1] + i3 * ToolSupply[1] * Traffic[2] +
i4 * ToolSupply[1] * Insurance[1] + i5 * ToolSupply[1] * Insurance[2] +
i6 * ToolSupply[1] * Locker[1] +
i7 * ToolSupply[1] * WorkingHours[1] + i8 * ToolSupply[1] * WorkingHours[2] + i9 * ToolSupply[1] * WorkingHours[3] + i10 * ToolSupply[1] * WorkingHours[4] +
i11 * ToolSupply[1] * BikeLines[2] +
i12 * ToolSupply[1] * CompPerPackage[3] + i13 * ToolSupply[1] * CompPerKM[2] +
i14 * Weather[1] * Traffic[1] + i15 * Weather[1] * Traffic[2] +
i16 * Weather[1] * Insurance[1] + i17 * Weather[1] * Insurance[2] +
i18 * Weather[1] * Locker[1] +
i19 * Weather[1] * WorkingHours[1] + i20 * Weather[1] * WorkingHours[2] + i21 * Weather[1] * WorkingHours[3] + i22 * Weather[1] * WorkingHours[4] +
i23 * Weather[1] * BikeLines[2] +
i24 * Weather[1] * CompPerPackage[3] + i25 * Weather[1] * CompPerKM[2] +
i26 * Traffic[1] * Insurance[1] + i27 * Traffic[1] * Insurance[2] + i28 * Traffic[2] * Insurance[1] + i29 * Traffic[2] * Insurance[2] +
i30 * Traffic[1] * Locker[1] + i31 * Traffic[2] * Locker[1] +
i32 * Traffic[1] * WorkingHours[1] + i33 * Traffic[1] * WorkingHours[2] + i34 * Traffic[1] * WorkingHours[3] + i35 * Traffic[1] * WorkingHours[4] +
i36 * Traffic[2] * WorkingHours[1] + i37 * Traffic[2] * WorkingHours[2] + i38 * Traffic[2] * WorkingHours[3] + i39 * Traffic[2] * WorkingHours[4] +
i40 * Traffic[1] * BikeLines[2] + i41 * Traffic[2] * BikeLines[2] +
i42 * Traffic[1] * CompPerPackage[3] + i43 * Traffic[1] * CompPerKM[2] + i44 * Traffic[2] * CompPerPackage[3] + i45 * Traffic[2] * CompPerKM[2] +
i46 * Insurance[1] * Locker[1] + i47 * Insurance[2] * Locker[1] +
i48 * Insurance[1] * WorkingHours[1] + i49 * Insurance[1] * WorkingHours[2] + i50 * Insurance[1] * WorkingHours[3] + i51 * Insurance[1] * WorkingHours[4] +
i52 * Insurance[2] * WorkingHours[1] + i53 * Insurance[2] * WorkingHours[2] + i54 * Insurance[2] * WorkingHours[3] + i55 * Insurance[2] * WorkingHours[4] +
i56 * Insurance[1] * BikeLines[2] + i57 * Insurance[2] * BikeLines[2] +
i58 * Insurance[1] * CompPerPackage[3] + i59 * Insurance[1] * CompPerKM[2] + i60 * Insurance[2] * CompPerPackage[3] + i61 * Insurance[2] * CompPerKM[2] +
i62 * Locker[1] * WorkingHours[1] + i63 * Locker[1] * WorkingHours[2] + i64 * Locker[1] * WorkingHours[3] + i65 * Locker[1] * WorkingHours[4] +
i66 * Locker[1] * BikeLines[2] +
i67 * Locker[1] * CompPerPackage[3] + i68 * Locker[1] * CompPerKM[2] +
i69 * WorkingHours[1] * BikeLines[2] + i70 * WorkingHours[2] * BikeLines[2] + i71 * WorkingHours[3] * BikeLines[2] + i72 * WorkingHours[4] * BikeLines[2] +
i73 * WorkingHours[1] * CompPerPackage[3] + i74 * WorkingHours[1] * CompPerKM[2] + i75 * WorkingHours[2] * CompPerPackage[3] + i76 * WorkingHours[2] * CompPerKM[2] +
i77 * WorkingHours[3] * CompPerPackage[3] + i78 * WorkingHours[3] * CompPerKM[2] + i79 * WorkingHours[4] * CompPerPackage[3] + i80 * WorkingHours[4] * CompPerKM[2] +
i81 * BikeLines[2] * CompPerPackage[3] + i82 * BikeLines[2] * CompPerKM[2] $
U(alt2) = b1 * ToolSupply + b2 * Weather + b3 * Traffic + b4 * Insurance + b5 * Locker + b6 * WorkingHours +
b7 * BikeLines + b8 * CompPerPackage + b9 * CompPerKM +
i1 * ToolSupply[1] * Weather[1] +
i2 * ToolSupply[1] * Traffic[1] + i3 * ToolSupply[1] * Traffic[2] +
i4 * ToolSupply[1] * Insurance[1] + i5 * ToolSupply[1] * Insurance[2] +
i6 * ToolSupply[1] * Locker[1] +
i7 * ToolSupply[1] * WorkingHours[1] + i8 * ToolSupply[1] * WorkingHours[2] + i9 * ToolSupply[1] * WorkingHours[3] + i10 * ToolSupply[1] * WorkingHours[4] +
i11 * ToolSupply[1] * BikeLines[2] +
i12 * ToolSupply[1] * CompPerPackage[3] + i13 * ToolSupply[1] * CompPerKM[2] +
i14 * Weather[1] * Traffic[1] + i15 * Weather[1] * Traffic[2] +
i16 * Weather[1] * Insurance[1] + i17 * Weather[1] * Insurance[2] +
i18 * Weather[1] * Locker[1] +
i19 * Weather[1] * WorkingHours[1] + i20 * Weather[1] * WorkingHours[2] + i21 * Weather[1] * WorkingHours[3] + i22 * Weather[1] * WorkingHours[4] +
i23 * Weather[1] * BikeLines[2] +
i24 * Weather[1] * CompPerPackage[3] + i25 * Weather[1] * CompPerKM[2] +
i26 * Traffic[1] * Insurance[1] + i27 * Traffic[1] * Insurance[2] + i28 * Traffic[2] * Insurance[1] + i29 * Traffic[2] * Insurance[2] +
i30 * Traffic[1] * Locker[1] + i31 * Traffic[2] * Locker[1] +
i32 * Traffic[1] * WorkingHours[1] + i33 * Traffic[1] * WorkingHours[2] + i34 * Traffic[1] * WorkingHours[3] + i35 * Traffic[1] * WorkingHours[4] +
i36 * Traffic[2] * WorkingHours[1] + i37 * Traffic[2] * WorkingHours[2] + i38 * Traffic[2] * WorkingHours[3] + i39 * Traffic[2] * WorkingHours[4] +
i40 * Traffic[1] * BikeLines[2] + i41 * Traffic[2] * BikeLines[2] +
i42 * Traffic[1] * CompPerPackage[3] + i43 * Traffic[1] * CompPerKM[2] + i44 * Traffic[2] * CompPerPackage[3] + i45 * Traffic[2] * CompPerKM[2] +
i46 * Insurance[1] * Locker[1] + i47 * Insurance[2] * Locker[1] +
i48 * Insurance[1] * WorkingHours[1] + i49 * Insurance[1] * WorkingHours[2] + i50 * Insurance[1] * WorkingHours[3] + i51 * Insurance[1] * WorkingHours[4] +
i52 * Insurance[2] * WorkingHours[1] + i53 * Insurance[2] * WorkingHours[2] + i54 * Insurance[2] * WorkingHours[3] + i55 * Insurance[2] * WorkingHours[4] +
i56 * Insurance[1] * BikeLines[2] + i57 * Insurance[2] * BikeLines[2] +
i58 * Insurance[1] * CompPerPackage[3] + i59 * Insurance[1] * CompPerKM[2] + i60 * Insurance[2] * CompPerPackage[3] + i61 * Insurance[2] * CompPerKM[2] +
i62 * Locker[1] * WorkingHours[1] + i63 * Locker[1] * WorkingHours[2] + i64 * Locker[1] * WorkingHours[3] + i65 * Locker[1] * WorkingHours[4] +
i66 * Locker[1] * BikeLines[2] +
i67 * Locker[1] * CompPerPackage[3] + i68 * Locker[1] * CompPerKM[2] +
i69 * WorkingHours[1] * BikeLines[2] + i70 * WorkingHours[2] * BikeLines[2] + i71 * WorkingHours[3] * BikeLines[2] + i72 * WorkingHours[4] * BikeLines[2] +
i73 * WorkingHours[1] * CompPerPackage[3] + i74 * WorkingHours[1] * CompPerKM[2] + i75 * WorkingHours[2] * CompPerPackage[3] + i76 * WorkingHours[2] * CompPerKM[2] +
i77 * WorkingHours[3] * CompPerPackage[3] + i78 * WorkingHours[3] * CompPerKM[2] + i79 * WorkingHours[4] * CompPerPackage[3] + i80 * WorkingHours[4] * CompPerKM[2] +
i81 * BikeLines[2] * CompPerPackage[3] + i82 * BikeLines[2] * CompPerKM[2] $


I get an error as Error in Command 1: Two identically named attributes do not have consistently specified levels: 'alt1.toolsupply', 'alt1.toolsupply'.



With the following syntax for the d-efficient design:

Design
;alts = alt1, alt2
;rows = 180
;eff = (mnl,d)
;block = 20
;model:
U(alt1) = b01 + b1.dummy[0.00001|0.00001] * ToolSupply[1,2,0] + b2.dummy[-0.00001] * Weather[1,0] + b3.dummy[-0.00001|0.00001] * Traffic[1,2,0] +
b4.dummy[0.00001|0.00001] * Insurance[1,2,0] + b5.dummy[0.00001] * Locker[1,0] + b6.dummy[0.00001|0.00001|0.00001|0.00001] * WorkingHours[1,2,3,4,0] +
b7 * BikeLines[0:1] + b8 * CompPerPackage[40:160] + b9 * CompPerKM[20:60] +
i1 * ToolSupply.dummy[1] * Weather.dummy[1] +
i2 * ToolSupply.dummy[1] * Traffic.dummy[1] + i3 * ToolSupply.dummy[1] * Traffic.dummy[2] +
i4 * ToolSupply.dummy[1] * Insurance.dummy[1] + i5 * ToolSupply.dummy[1] * Insurance.dummy[2] +
i6 * ToolSupply.dummy[1] * Locker.dummy[1] +
i7 * ToolSupply.dummy[1] * WorkingHours.dummy[1] + i8 * ToolSupply.dummy[1] * WorkingHours.dummy[2] + i9 * ToolSupply.dummy[1] * WorkingHours.dummy[3] + i10 * ToolSupply.dummy[1] * WorkingHours.dummy[4] +
i11 * ToolSupply.dummy[1] * BikeLines[1] +
i12 * ToolSupply.dummy[1] * CompPerPackage + i13 * ToolSupply.dummy[1] * CompPerKM +
i14 * Weather.dummy[1] * Traffic.dummy[1] + i15 * Weather.dummy[1] * Traffic.dummy[2] +
i16 * Weather.dummy[1] * Insurance.dummy[1] + i17 * Weather.dummy[1] * Insurance.dummy[2] +
i18 * Weather.dummy[1] * Locker.dummy[1] +
i19 * Weather.dummy[1] * WorkingHours.dummy[1] + i20 * Weather.dummy[1] * WorkingHours.dummy[2] + i21 * Weather.dummy[1] * WorkingHours.dummy[3] + i22 * Weather.dummy[1] * WorkingHours.dummy[4] +
i23 * Weather.dummy[1] * BikeLines[1] +
i24 * Weather.dummy[1] * CompPerPackage + i25 * Weather.dummy[1] * CompPerKM +
i26 * Traffic.dummy[1] * Insurance.dummy[1] + i27 * Traffic.dummy[1] * Insurance.dummy[2] + i28 * Traffic.dummy[2] * Insurance.dummy[1] + i29 * Traffic.dummy[2] * Insurance.dummy[2] +
i30 * Traffic.dummy[1] * Locker.dummy[1] + i31 * Traffic.dummy[2] * Locker.dummy[1] +
i32 * Traffic.dummy[1] * WorkingHours.dummy[1] + i33 * Traffic.dummy[1] * WorkingHours.dummy[2] + i34 * Traffic.dummy[1] * WorkingHours.dummy[3] + i35 * Traffic.dummy[1] * WorkingHours.dummy[4] +
i36 * Traffic.dummy[2] * WorkingHours.dummy[1] + i37 * Traffic.dummy[2] * WorkingHours.dummy[2] + i38 * Traffic.dummy[2] * WorkingHours.dummy[3] + i39 * Traffic.dummy[2] * WorkingHours.dummy[4] +
i40 * Traffic.dummy[1] * BikeLines[1] + i41 * Traffic.dummy[2] * BikeLines[1] +
i42 * Traffic.dummy[1] * CompPerPackage + i43 * Traffic.dummy[1] * CompPerKM + i44 * Traffic.dummy[2] * CompPerPackage + i45 * Traffic.dummy[2] * CompPerKM +
i46 * Insurance.dummy[1] * Locker.dummy[1] + i47 * Insurance.dummy[2] * Locker.dummy[1] +
i48 * Insurance.dummy[1] * WorkingHours.dummy[1] + i49 * Insurance.dummy[1] * WorkingHours.dummy[2] + i50 * Insurance.dummy[1] * WorkingHours.dummy[3] + i51 * Insurance.dummy[1] * WorkingHours.dummy[4] +
i52 * Insurance.dummy[2] * WorkingHours.dummy[1] + i53 * Insurance.dummy[2] * WorkingHours.dummy[2] + i54 * Insurance.dummy[2] * WorkingHours.dummy[3] + i55 * Insurance.dummy[2] * WorkingHours.dummy[4] +
i56 * Insurance.dummy[1] * BikeLines[1] + i57 * Insurance.dummy[2] * BikeLines[1] +
i58 * Insurance.dummy[1] * CompPerPackage + i59 * Insurance.dummy[1] * CompPerKM + i60 * Insurance.dummy[2] * CompPerPackage + i61 * Insurance.dummy[2] * CompPerKM +
i62 * Locker.dummy[1] * WorkingHours.dummy[1] + i63 * Locker.dummy[1] * WorkingHours.dummy[2] + i64 * Locker.dummy[1] * WorkingHours.dummy[3] + i65 * Locker.dummy[1] * WorkingHours.dummy[4] +
i66 * Locker.dummy[1] * BikeLines[1] +
i67 * Locker.dummy[1] * CompPerPackage + i68 * Locker.dummy[1] * CompPerKM +
i69 * WorkingHours.dummy[1] * BikeLines[1] + i70 * WorkingHours.dummy[2] * BikeLines[1] + i71 * WorkingHours.dummy[3] * BikeLines[1] + i72 * WorkingHours.dummy[4] * BikeLines[1] +
i73 * WorkingHours.dummy[1] * CompPerPackage + i74 * WorkingHours.dummy[1] * CompPerKM + i75 * WorkingHours.dummy[2] * CompPerPackage + i76 * WorkingHours.dummy[2] * CompPerKM +
i77 * WorkingHours.dummy[3] * CompPerPackage + i78 * WorkingHours.dummy[3] * CompPerKM + i79 * WorkingHours.dummy[4] * CompPerPackage + i80 * WorkingHours.dummy[4] * CompPerKM +
i81 * BikeLines[1] * CompPerPackage + i82 * BikeLines[1] * CompPerKM $
U(alt2) = b1.dummy[0.00001|0.00001] * ToolSupply[1,2,0] + b2.dummy[-0.00001] * Weather[1,0] + b3.dummy[-0.00001|0.00001] * Traffic[1,2,0] +
b4.dummy[0.00001|0.00001] * Insurance[1,2,0] + b5.dummy[0.00001] * Locker[1,0] + b6.dummy[0.00001|0.00001|0.00001|0.00001] * WorkingHours[1,2,3,4,0] +
b7 * BikeLines[0:1] + b8 * CompPerPackage[40:160] + b9 * CompPerKM[20:60] +
i1 * ToolSupply.dummy[1] * Weather.dummy[1] +
i2 * ToolSupply.dummy[1] * Traffic.dummy[1] + i3 * ToolSupply.dummy[1] * Traffic.dummy[2] +
i4 * ToolSupply.dummy[1] * Insurance.dummy[1] + i5 * ToolSupply.dummy[1] * Insurance.dummy[2] +
i6 * ToolSupply.dummy[1] * Locker.dummy[1] +
i7 * ToolSupply.dummy[1] * WorkingHours.dummy[1] + i8 * ToolSupply.dummy[1] * WorkingHours.dummy[2] + i9 * ToolSupply.dummy[1] * WorkingHours.dummy[3] + i10 * ToolSupply.dummy[1] * WorkingHours.dummy[4] +
i11 * ToolSupply.dummy[1] * BikeLines[1] +
i12 * ToolSupply.dummy[1] * CompPerPackage + i13 * ToolSupply.dummy[1] * CompPerKM +
i14 * Weather.dummy[1] * Traffic.dummy[1] + i15 * Weather.dummy[1] * Traffic.dummy[2] +
i16 * Weather.dummy[1] * Insurance.dummy[1] + i17 * Weather.dummy[1] * Insurance.dummy[2] +
i18 * Weather.dummy[1] * Locker.dummy[1] +
i19 * Weather.dummy[1] * WorkingHours.dummy[1] + i20 * Weather.dummy[1] * WorkingHours.dummy[2] + i21 * Weather.dummy[1] * WorkingHours.dummy[3] + i22 * Weather.dummy[1] * WorkingHours.dummy[4] +
i23 * Weather.dummy[1] * BikeLines[1] +
i24 * Weather.dummy[1] * CompPerPackage + i25 * Weather.dummy[1] * CompPerKM +
i26 * Traffic.dummy[1] * Insurance.dummy[1] + i27 * Traffic.dummy[1] * Insurance.dummy[2] + i28 * Traffic.dummy[2] * Insurance.dummy[1] + i29 * Traffic.dummy[2] * Insurance.dummy[2] +
i30 * Traffic.dummy[1] * Locker.dummy[1] + i31 * Traffic.dummy[2] * Locker.dummy[1] +
i32 * Traffic.dummy[1] * WorkingHours.dummy[1] + i33 * Traffic.dummy[1] * WorkingHours.dummy[2] + i34 * Traffic.dummy[1] * WorkingHours.dummy[3] + i35 * Traffic.dummy[1] * WorkingHours.dummy[4] +
i36 * Traffic.dummy[2] * WorkingHours.dummy[1] + i37 * Traffic.dummy[2] * WorkingHours.dummy[2] + i38 * Traffic.dummy[2] * WorkingHours.dummy[3] + i39 * Traffic.dummy[2] * WorkingHours.dummy[4] +
i40 * Traffic.dummy[1] * BikeLines[1] + i41 * Traffic.dummy[2] * BikeLines[1] +
i42 * Traffic.dummy[1] * CompPerPackage + i43 * Traffic.dummy[1] * CompPerKM + i44 * Traffic.dummy[2] * CompPerPackage + i45 * Traffic.dummy[2] * CompPerKM +
i46 * Insurance.dummy[1] * Locker.dummy[1] + i47 * Insurance.dummy[2] * Locker.dummy[1] +
i48 * Insurance.dummy[1] * WorkingHours.dummy[1] + i49 * Insurance.dummy[1] * WorkingHours.dummy[2] + i50 * Insurance.dummy[1] * WorkingHours.dummy[3] + i51 * Insurance.dummy[1] * WorkingHours.dummy[4] +
i52 * Insurance.dummy[2] * WorkingHours.dummy[1] + i53 * Insurance.dummy[2] * WorkingHours.dummy[2] + i54 * Insurance.dummy[2] * WorkingHours.dummy[3] + i55 * Insurance.dummy[2] * WorkingHours.dummy[4] +
i56 * Insurance.dummy[1] * BikeLines[1] + i57 * Insurance.dummy[2] * BikeLines[1] +
i58 * Insurance.dummy[1] * CompPerPackage + i59 * Insurance.dummy[1] * CompPerKM + i60 * Insurance.dummy[2] * CompPerPackage + i61 * Insurance.dummy[2] * CompPerKM +
i62 * Locker.dummy[1] * WorkingHours.dummy[1] + i63 * Locker.dummy[1] * WorkingHours.dummy[2] + i64 * Locker.dummy[1] * WorkingHours.dummy[3] + i65 * Locker.dummy[1] * WorkingHours.dummy[4] +
i66 * Locker.dummy[1] * BikeLines[1] +
i67 * Locker.dummy[1] * CompPerPackage + i68 * Locker.dummy[1] * CompPerKM +
i69 * WorkingHours.dummy[1] * BikeLines[1] + i70 * WorkingHours.dummy[2] * BikeLines[1] + i71 * WorkingHours.dummy[3] * BikeLines[1] + i72 * WorkingHours.dummy[4] * BikeLines[1] +
i73 * WorkingHours.dummy[1] * CompPerPackage + i74 * WorkingHours.dummy[1] * CompPerKM + i75 * WorkingHours.dummy[2] * CompPerPackage + i76 * WorkingHours.dummy[2] * CompPerKM +
i77 * WorkingHours.dummy[3] * CompPerPackage + i78 * WorkingHours.dummy[3] * CompPerKM + i79 * WorkingHours.dummy[4] * CompPerPackage + i80 * WorkingHours.dummy[4] * CompPerKM +
i81 * BikeLines[1] * CompPerPackage + i82 * BikeLines[1] * CompPerKM $

I get an error as Error in Command 1: Two identically named attributes do not have consistently specified levels: 'alt1.bikelines', 'alt1.bikelines'. But the source of these errors are not visible to me, could they be rooted in another problem? As a note, I did not use continuous variables for the orthogonal fractional factorial design, but used for the d-efficient design.
acanakci
 
Posts: 16
Joined: Tue Jun 11, 2024 11:55 pm

Re: Efficient Design to Encounter Two-Way Interactions

Postby Michiel Bliemer » Fri Jul 26, 2024 8:04 am

Your specifications of interactions with dummy variables are not always correct.

Please use
i1 * ToolSupply.dummy[1] * Weather.dummy[1]
instead of
i1 * ToolSupply[1] * Weather[1]

Please use
b7 * BikeLines[0,1]
instead of
b7 * BikeLines[0:1]

Please use
i81 * BikeLines.dummy[1] * CompPerPackage
instead of
i81 * BikeLines[1] * CompPerPackage

I suggest that you gradually build up your utility functions, so first start with only main effects, then add some interaction effects, and each time you run the script to make sure that there are no errors.

Michiel
Michiel Bliemer
 
Posts: 1833
Joined: Tue Mar 31, 2009 4:13 pm

Re: Efficient Design to Encounter Two-Way Interactions

Postby acanakci » Fri Jul 26, 2024 9:53 pm

Thank you very much!

I still get varying errors. Could you please provide me with an example syntax for the following attributes?

Safety Equipment Tool Supply: Categorical (0,1)
Average Proportion of Bike Lines on the Route: Continuous (0, 1/3, 2/3, 1)
Compensation per Package: Continuous (40, 80, 120, 160)
Working Hours: Categorical (0, 1, 2, 3, 4)

I need the example syntax for:

Orthogonal fractional factorial design with one-way and two-way interactions
Efficient design with one-way and two-way interactions
Considering our discussions and the manual, I am a bit confused. A detailed example would greatly help clarify my understanding.

Thank you very much for your assistance and time.

Beyza
acanakci
 
Posts: 16
Joined: Tue Jun 11, 2024 11:55 pm

Re: Efficient Design to Encounter Two-Way Interactions

Postby Michiel Bliemer » Mon Jul 29, 2024 9:34 am

The Ngene manual, as well as posts on this forum, provide many examples, so please have a look at them.

Main effects in your case:

b1.dummy[0] * safety[1,0] ? 0 = base level
b2[0] * bikelines[0,0.33,0.67,1]
b3[0] * compensation[40,80,120,160]
b4.dummy[0|0|0] * hours[1,2,3,0] ? 0 = base level

Some interaction effects:

i1[0] * bikelines * safety.dummy[1]
i2[0] * bikelines * compensation
i3 * compensation * hours.dummy[1] + i4 * compensation * hours.dummy[2] + i5 * compensation * hours.dummy[3]

Michiel
Michiel Bliemer
 
Posts: 1833
Joined: Tue Mar 31, 2009 4:13 pm

Re: Efficient Design to Encounter Two-Way Interactions

Postby acanakci » Tue Jul 30, 2024 1:06 am

Thank you!

I followed your suggestions and things get more clear.

I just wonder if we cannot use continuous variables in an orthogonal fractional factorial design? When I write the utility function with the continuous variables, I get the following error: Error: Use of continuous variables requires the use of the ';eff' property.

Here is the syntax I am using:

Design
;alts = Alt1, Alt2
;rows = 180
;orth = ood
;block = 20
;model:
U(Alt1) = b1.dummy[0.00001] * ToolSupply[0,1] + b2.dummy[0.00001] * Weather[0,1] + b3.dummy[0.00001|0.00001] * Traffic[0,1,2] +
b4.dummy[0.00001|0.00001] * Insurance[0,1,2] + b5.dummy[0.00001] * Locker[0,1] + b6.dummy[0.00001|0.00001|0.00001|0.00001] * WorkingHours[0,1,2,3,4] +
b7[0.00001] * BikeLines[0:1] + b8[0.00001] * CompPerPackage[40:160] + b9[0.00001] * CompPerKM[20:60] /
U(Alt2) = b1 * ToolSupply + b2 * Weather + b3 * Traffic + b4 * Insurance + b5 * Locker + b6 * WorkingHours +
b7 * BikeLines + b8 * CompPerPackage + b9 * CompPerKM +
$

Beyza
acanakci
 
Posts: 16
Joined: Tue Jun 11, 2024 11:55 pm

Re: Efficient Design to Encounter Two-Way Interactions

Postby Michiel Bliemer » Tue Jul 30, 2024 7:37 am

No, the use of continuous attribute level requires a special type of efficient design with a special type of algorithm. Orthogonal designs require by definition a finite set of fixed attribute levels.

Michiel
Michiel Bliemer
 
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Joined: Tue Mar 31, 2009 4:13 pm


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